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  1. Image
  2. Image Classification

Microscope

PreviousFire extinguisher safety pinNextObject Detection

Last updated 1 month ago

Task: Image Classification

License:

Description

This dataset has been collected by Edge Impulse teams and contains images taken from a smartphone using the NATIONAL GEOGRAPHIC 40x-1280x Microscope.

Compatible Blocks

Dataset Details

  • Total Data Items: 246

  • Labeling Method: single label

  • Train/Test Split: 81.30% / 18.70%

Training Set

Testing Set

Total Data Items

200

46

Labels

cotton stem, epidermis onion, housefly leg, unknown, wood stem

cotton stem, epidermis onion, housefly leg, unknown, wood stem

Usage

  • Download

    • HuggingFace - Soon

    • Kaggle - Soon

  • Import this dataset to your Edge Impulse project

Citation

If you use this dataset in your research paper, please cite it using the following BibTeX:

@misc{edgeimpulse_dataset_497431,
    title = {Image Classification - Microscope},
    author = {Edge Impulse},
    year = {2024},
    url = {https://studio.edgeimpulse.com/public/497431/latest},
    note = {Apache 2.0}
}

Feature extraction:

Learning block: ,

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This project uses the Edge Impulse Exporter Format (info.labels). See this for more info.

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